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Fully Automated Myocardial Strain Estimation from Cardiovascular MRI–tagged Images Using a Deep Learning Framework in the UK Biobank

PURPOSE: To demonstrate the feasibility and performance of a fully automated deep learning framework to estimate myocardial strain from short-axis cardiac MRI–tagged images. MATERIALS AND METHODS: In this retrospective cross-sectional study, 4508 cases from the U.K. Biobank were split randomly into...

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Autores principales: Ferdian, Edward, Suinesiaputra, Avan, Fung, Kenneth, Aung, Nay, Lukaschuk, Elena, Barutcu, Ahmet, Maclean, Edd, Paiva, Jose, Piechnik, Stefan K., Neubauer, Stefan, Petersen, Steffen E., Young, Alistair A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Radiological Society of North America 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7051160/
https://www.ncbi.nlm.nih.gov/pubmed/32715298
http://dx.doi.org/10.1148/ryct.2020190032
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author Ferdian, Edward
Suinesiaputra, Avan
Fung, Kenneth
Aung, Nay
Lukaschuk, Elena
Barutcu, Ahmet
Maclean, Edd
Paiva, Jose
Piechnik, Stefan K.
Neubauer, Stefan
Petersen, Steffen E.
Young, Alistair A.
author_facet Ferdian, Edward
Suinesiaputra, Avan
Fung, Kenneth
Aung, Nay
Lukaschuk, Elena
Barutcu, Ahmet
Maclean, Edd
Paiva, Jose
Piechnik, Stefan K.
Neubauer, Stefan
Petersen, Steffen E.
Young, Alistair A.
author_sort Ferdian, Edward
collection PubMed
description PURPOSE: To demonstrate the feasibility and performance of a fully automated deep learning framework to estimate myocardial strain from short-axis cardiac MRI–tagged images. MATERIALS AND METHODS: In this retrospective cross-sectional study, 4508 cases from the U.K. Biobank were split randomly into 3244 training cases, 812 validation cases, and 452 test cases. Ground truth myocardial landmarks were defined and tracked by manual initialization and correction of deformable image registration using previously validated software with five readers. The fully automatic framework consisted of (a) a convolutional neural network (CNN) for localization and (b) a combination of a recurrent neural network (RNN) and a CNN to detect and track the myocardial landmarks through the image sequence for each slice. Radial and circumferential strain were then calculated from the motion of the landmarks and averaged on a slice basis. RESULTS: Within the test set, myocardial end-systolic circumferential Green strain errors were −0.001 ± 0.025, −0.001 ± 0.021, and 0.004 ± 0.035 in the basal, mid-, and apical slices, respectively (mean ± standard deviation of differences between predicted and manual strain). The framework reproduced significant reductions in circumferential strain in participants with diabetes, hypertensive participants, and participants with a previous heart attack. Typical processing time was approximately 260 frames (approximately 13 slices) per second on a GPU with 12 GB RAM compared with 6–8 minutes per slice for the manual analysis. CONCLUSION: The fully automated combined RNN and CNN framework for analysis of myocardial strain enabled unbiased strain evaluation in a high-throughput workflow, with similar ability to distinguish impairment due to diabetes, hypertension, and previous heart attack. Published under a CC BY 4.0 license. Supplemental material is available for this article.
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spelling pubmed-70511602020-07-24 Fully Automated Myocardial Strain Estimation from Cardiovascular MRI–tagged Images Using a Deep Learning Framework in the UK Biobank Ferdian, Edward Suinesiaputra, Avan Fung, Kenneth Aung, Nay Lukaschuk, Elena Barutcu, Ahmet Maclean, Edd Paiva, Jose Piechnik, Stefan K. Neubauer, Stefan Petersen, Steffen E. Young, Alistair A. Radiol Cardiothorac Imaging Original Research PURPOSE: To demonstrate the feasibility and performance of a fully automated deep learning framework to estimate myocardial strain from short-axis cardiac MRI–tagged images. MATERIALS AND METHODS: In this retrospective cross-sectional study, 4508 cases from the U.K. Biobank were split randomly into 3244 training cases, 812 validation cases, and 452 test cases. Ground truth myocardial landmarks were defined and tracked by manual initialization and correction of deformable image registration using previously validated software with five readers. The fully automatic framework consisted of (a) a convolutional neural network (CNN) for localization and (b) a combination of a recurrent neural network (RNN) and a CNN to detect and track the myocardial landmarks through the image sequence for each slice. Radial and circumferential strain were then calculated from the motion of the landmarks and averaged on a slice basis. RESULTS: Within the test set, myocardial end-systolic circumferential Green strain errors were −0.001 ± 0.025, −0.001 ± 0.021, and 0.004 ± 0.035 in the basal, mid-, and apical slices, respectively (mean ± standard deviation of differences between predicted and manual strain). The framework reproduced significant reductions in circumferential strain in participants with diabetes, hypertensive participants, and participants with a previous heart attack. Typical processing time was approximately 260 frames (approximately 13 slices) per second on a GPU with 12 GB RAM compared with 6–8 minutes per slice for the manual analysis. CONCLUSION: The fully automated combined RNN and CNN framework for analysis of myocardial strain enabled unbiased strain evaluation in a high-throughput workflow, with similar ability to distinguish impairment due to diabetes, hypertension, and previous heart attack. Published under a CC BY 4.0 license. Supplemental material is available for this article. Radiological Society of North America 2020-02-27 /pmc/articles/PMC7051160/ /pubmed/32715298 http://dx.doi.org/10.1148/ryct.2020190032 Text en 2020 by the Radiological Society of North America, Inc. http://creativecommons.org/licenses/by/4.0/ Published under a (http://creativecommons.org/licenses/by/4.0/) CC BY 4.0 license.
spellingShingle Original Research
Ferdian, Edward
Suinesiaputra, Avan
Fung, Kenneth
Aung, Nay
Lukaschuk, Elena
Barutcu, Ahmet
Maclean, Edd
Paiva, Jose
Piechnik, Stefan K.
Neubauer, Stefan
Petersen, Steffen E.
Young, Alistair A.
Fully Automated Myocardial Strain Estimation from Cardiovascular MRI–tagged Images Using a Deep Learning Framework in the UK Biobank
title Fully Automated Myocardial Strain Estimation from Cardiovascular MRI–tagged Images Using a Deep Learning Framework in the UK Biobank
title_full Fully Automated Myocardial Strain Estimation from Cardiovascular MRI–tagged Images Using a Deep Learning Framework in the UK Biobank
title_fullStr Fully Automated Myocardial Strain Estimation from Cardiovascular MRI–tagged Images Using a Deep Learning Framework in the UK Biobank
title_full_unstemmed Fully Automated Myocardial Strain Estimation from Cardiovascular MRI–tagged Images Using a Deep Learning Framework in the UK Biobank
title_short Fully Automated Myocardial Strain Estimation from Cardiovascular MRI–tagged Images Using a Deep Learning Framework in the UK Biobank
title_sort fully automated myocardial strain estimation from cardiovascular mri–tagged images using a deep learning framework in the uk biobank
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7051160/
https://www.ncbi.nlm.nih.gov/pubmed/32715298
http://dx.doi.org/10.1148/ryct.2020190032
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